CLSep 15, 2021

Efficient Domain Adaptation of Language Models via Adaptive Tokenization

arXiv:2109.07460v1667 citations
Originality Incremental advance
AI Analysis

This addresses the domain adaptation bottleneck in NLP for practitioners needing efficient model transfer, though it is incremental as it builds on existing tokenization methods.

The paper tackles the problem of suboptimal performance when fine-tuning pretrained language models on new domains by proposing adaptive tokenization, which achieves over 97% of the performance benefits of domain-specific pretraining while being 72x faster and producing smaller models.

Contextual embedding-based language models trained on large data sets, such as BERT and RoBERTa, provide strong performance across a wide range of tasks and are ubiquitous in modern NLP. It has been observed that fine-tuning these models on tasks involving data from domains different from that on which they were pretrained can lead to suboptimal performance. Recent work has explored approaches to adapt pretrained language models to new domains by incorporating additional pretraining using domain-specific corpora and task data. We propose an alternative approach for transferring pretrained language models to new domains by adapting their tokenizers. We show that domain-specific subword sequences can be efficiently determined directly from divergences in the conditional token distributions of the base and domain-specific corpora. In datasets from four disparate domains, we find adaptive tokenization on a pretrained RoBERTa model provides >97% of the performance benefits of domain specific pretraining. Our approach produces smaller models and less training and inference time than other approaches using tokenizer augmentation. While adaptive tokenization incurs a 6% increase in model parameters in our experimentation, due to the introduction of 10k new domain-specific tokens, our approach, using 64 vCPUs, is 72x faster than further pretraining the language model on domain-specific corpora on 8 TPUs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes